Litcius/Paper detail

Machine Learning-Based Prediction of Distribution Network Voltage and Sensor Allocation

Alvaro Furlani Bastos, Surya Santoso, Venkat Krishnan, Yingchen Zhang

202028 citationsDOI

Abstract

Increasing penetration levels of fast-varying energy resources might negatively affect power system operation. At the same time, sensor deployment throughout distribution networks improves system awareness and enables the development of new and advanced voltage control solutions. Such control techniques rely on accurate prediction in anticipation of voltage violation scenarios. This paper analyzes various approaches to voltage prediction in a distribution system, and it is shown that combining multiple techniques into a single regressor improves its predictive power. Moreover, a two-step regressor is proposed in which initial predictions based on a global regressor are refined by local regressors; in this case, prediction errors decrease significantly. Additionally, a clustering approach is employed to perform sensor allocation so that only the most influential buses are selected for monitoring without diminishing prediction accuracy.

Topics & Concepts

Cluster analysisSoftware deploymentComputer scienceVoltageAnticipation (artificial intelligence)Artificial intelligenceEngineeringOperating systemElectrical engineeringOptimal Power Flow DistributionEnergy Load and Power ForecastingPower System Optimization and Stability
Machine Learning-Based Prediction of Distribution Network Voltage and Sensor Allocation | Litcius